Testing for concept shift online

12/28/2020
by   Vladimir Vovk, et al.
0

This note continues study of exchangeability martingales, i.e., processes that are martingales under any exchangeable distribution for the observations. Such processes can be used for detecting violations of the IID assumption, which is commonly made in machine learning. Violations of the IID assumption are sometimes referred to as dataset shift, and dataset shift is sometimes subdivided into concept shift, covariate shift, etc. Our primary interest is in concept shift, but we will also discuss exchangeability martingales that decompose perfectly into two components one of which detects concept shift and the other detects what we call label shift. Our methods will be based on techniques of conformal prediction.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/19/2021

More Generalizable Models For Sepsis Detection Under Covariate Shift

Sepsis is a major cause of mortality in the intensive care units (ICUs)....
research
01/11/2021

Representativeness in Statistics, Politics, and Machine Learning

Representativeness is a foundational yet slippery concept. Though famili...
research
05/17/2022

A unified framework for dataset shift diagnostics

Most machine learning (ML) methods assume that the data used in the trai...
research
11/17/2022

Online Distribution Shift Detection via Recency Prediction

When deploying modern machine learning-enabled robotic systems in high-s...
research
10/29/2018

Failing Loudly: An Empirical Study of Methods for Detecting Dataset Shift

We might hope that when faced with unexpected inputs, well-designed soft...
research
07/06/2016

Accelerating eigenvector and pseudospectra computation using blocked multi-shift triangular solves

Multi-shift triangular solves are basic linear algebra calculations with...
research
02/17/2019

Semiparametric correction for endogenous truncation bias with Vox Populi based participation decision

We synthesize the knowledge present in various scientific disciplines fo...

Please sign up or login with your details

Forgot password? Click here to reset